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Agnostic Multi-Robust Learning Using ERM

Machine Learning 2024-02-14 v2 Cryptography and Security Computer Vision and Pattern Recognition

Abstract

A fundamental problem in robust learning is asymmetry: a learner needs to correctly classify every one of exponentially-many perturbations that an adversary might make to a test-time natural example. In contrast, the attacker only needs to find one successful perturbation. Xiang et al.[2022] proposed an algorithm that in the context of patch attacks for image classification, reduces the effective number of perturbations from an exponential to a polynomial number of perturbations and learns using an ERM oracle. However, to achieve its guarantee, their algorithm requires the natural examples to be robustly realizable. This prompts the natural question; can we extend their approach to the non-robustly-realizable case where there is no classifier with zero robust error? Our first contribution is to answer this question affirmatively by reducing this problem to a setting in which an algorithm proposed by Feige et al.[2015] can be applied, and in the process extend their guarantees. Next, we extend our results to a multi-group setting and introduce a novel agnostic multi-robust learning problem where the goal is to learn a predictor that achieves low robust loss on a (potentially) rich collection of subgroups.

Keywords

Cite

@article{arxiv.2303.08944,
  title  = {Agnostic Multi-Robust Learning Using ERM},
  author = {Saba Ahmadi and Avrim Blum and Omar Montasser and Kevin Stangl},
  journal= {arXiv preprint arXiv:2303.08944},
  year   = {2024}
}